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Emergent Complexity in Agent-Based Computational Economics

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  • Shu-Heng Chan
  • Shu G. Wang

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  • Shu-Heng Chan & Shu G. Wang, 2010. "Emergent Complexity in Agent-Based Computational Economics," ASSRU Discussion Papers 1017, ASSRU - Algorithmic Social Science Research Unit.
  • Handle: RePEc:trn:utwpas:1017
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    Cited by:

    1. Hanappi, Hardy, 2017. "Agent-based modelling. History, essence, future," MPRA Paper 79331, University Library of Munich, Germany.

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